Hypergraph Structure Learning for Hypergraph Neural Networks

Author:

Cai Derun12,Song Moxian12,Sun Chenxi12,Zhang Baofeng12,Hong Shenda34,Li Hongyan12

Affiliation:

1. Key Laboratory of Machine Perception (Ministry of Education), Peking University

2. School of Electronics Engineering and Computer Science, Peking University

3. National Institute of Health Data Science, Peking University

4. Institute of Medical Technology, Health Science Center of Peking University

Abstract

Hypergraphs are natural and expressive modeling tools to encode high-order relationships among entities. Several variations of Hypergraph Neural Networks (HGNNs) are proposed to learn the node representations and complex relationships in the hypergraphs. Most current approaches assume that the input hypergraph structure accurately depicts the relations in the hypergraphs. However, the input hypergraph structure inevitably contains noise, task-irrelevant information, or false-negative connections. Treating the input hypergraph structure as ground-truth information unavoidably leads to sub-optimal performance. In this paper, we propose a Hypergraph Structure Learning (HSL) framework, which optimizes the hypergraph structure and the HGNNs simultaneously in an end-to-end way. HSL learns an informative and concise hypergraph structure that is optimized for downstream tasks. To efficiently learn the hypergraph structure, HSL adopts a two-stage sampling process: hyperedge sampling for pruning redundant hyperedges and incident node sampling for pruning irrelevant incident nodes and discovering potential implicit connections. The consistency between the optimized structure and the original structure is maintained by the intra-hyperedge contrastive learning module. The sampling processes are jointly optimized with HGNNs towards the objective of the downstream tasks. Experiments conducted on 7 datasets show shat HSL outperforms the state-of-the-art baselines while adaptively sparsifying hypergraph structures.

Publisher

International Joint Conferences on Artificial Intelligence Organization

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1. CHGNN: A Semi-Supervised Contrastive Hypergraph Learning Network;IEEE Transactions on Knowledge and Data Engineering;2024-09

2. Complex Graph Analysis and Representation Learning: Problems, Techniques, and Applications;IEEE Transactions on Network Science and Engineering;2024-09

3. A Survey on Hypergraph Neural Networks: An In-Depth and Step-By-Step Guide;Proceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining;2024-08-24

4. Hypergraph Convolutional Networks for Fine-Grained lCU Patient Similarity Analysis and Risk Prediction;2024 IEEE 12th International Conference on Healthcare Informatics (ICHI);2024-06-03

5. Reordering and Compression for Hypergraph Processing;IEEE Transactions on Computers;2024-06

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